A novel fuzzy rough granular neural network for classification

Ganivada, Avatharam ; Pal, Sankar K. (2011) A novel fuzzy rough granular neural network for classification International Journal of Computational Intelligence Systems (IJCIS), 4 (5). pp. 1042-1051. ISSN 1875-6891

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Official URL: http://www.isical.ac.in/~sankar/paper/IJCIS%20Arti...

Abstract

A novel fuzzy rough granular neural network (NFRGNN) based on the multilayer perceptron using backpropagation algorithm is described for fuzzy classification of patterns. We provide a development strategy of knowledge extraction from data using fuzzy rough set theoretic techniques. Extracted knowledge is then encoded into the network in the form of initial weights. The granular input vector is presented to the network while the target vector is provided in terms of membership values and zeros. The superiority of NFRGNN is demonstrated on several real life data sets.

Item Type:Article
Source:Copyright of this article belongs to Atlantis Press.
Keywords:Granular Computing; Fuzzy Reflexive Relation; Fuzzy Rough Sets; Rule Based Layered Network; Fuzzy Pattern Classification
ID Code:77723
Deposited On:14 Jan 2012 06:20
Last Modified:14 Jan 2012 06:20

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